Abstract
AbstractCOVID-19 has led to the most widespread public health crisis in recent history. The first case of the disease was detected in India on 31 January 2019, and confirmed cases stand at 74,281 as of 13 May 2020. Mathematical modeling can be utilized to forecast the final numbers as well as the endpoint of the disease in India and its states, as well as assess the impact of social distancing measures. In the present work, the Susceptible-Infected-Recovered (SIR) model and the Logistic Growth model have been implemented to predict the endpoint of COVID-19 in India as well as three states accounting for over 55% of the total cases – Maharashtra, Gujarat and Delhi. The results using the SIR model indicate that the disease will reach an endpoint in India on 12 September, while Maharashtra, Gujarat and Delhi will reach endpoints on 20 August, 30 July and 9 September respectively. Using the Logistic Regression model, the endpoint for India is predicted on 23 July, while that for Maharashtra, Gujarat and Delhi is 5 July, 23 June and 10 August respectively. It is also observed that the case numbers predicted by the SIR model are greater than those for the Logistic Growth model in each case. The results suggest that the lockdown enacted by the Government of India has had only a moderate impact on the spread of COVID-19, and emphasize the need for firm implementation of social distancing guidelines.
Publisher
Cold Spring Harbor Laboratory
Reference41 articles.
1. Gaurav Pandey , Poonam Chaudhary , Rajan Gupta , and Saibal Pal . Seir and regression model based covid-19 outbreak predictions in india. arXiv preprint arXiv:2004.00958, 2020.
2. Jon Cohen and Dennis Normile . New sars-like virus in china triggers alarm, 2020.
3. World Health Organization. Coronavirus disease 2019 (covid-19): situation report, 111.-, 2020.
4. Lucy van Dorp , Mislav Acman , Damien Richard , Liam P Shaw, Charlotte E Ford , Louise Ormond , Christopher J Owen , Juanita Pang , Cedric CS Tan , Florencia AT Boshier , et al. Emergence of genomic diversity and recurrent mutations in sars-cov-2. Infection, Genetics and Evolution, page 104351, 2020.
5. Xingguang Li , Junjie Zai , Qiang Zhao , Qing Nie , Yi Li , Brian T Foley , and Antoine Chaillon . Evolutionary history, potential intermediate animal host, and cross-species analyses of sars-cov-2. Journal of medical virology, 2020.
Cited by
9 articles.
订阅此论文施引文献
订阅此论文施引文献,注册后可以免费订阅5篇论文的施引文献,订阅后可以查看论文全部施引文献